4.7 Article

Addiction Symptom Network of Young Internet Users: Network Analysis

Journal

JOURNAL OF MEDICAL INTERNET RESEARCH
Volume 24, Issue 11, Pages -

Publisher

JMIR PUBLICATIONS, INC
DOI: 10.2196/38984

Keywords

internet addiction; Internet Addiction Test; network analysis; adolescents

Funding

  1. Department of Health of Jiangsu Province [Z201319]
  2. Jiangsu Higher Vocational Education High-level Specialty Group Construction Project (2021) [1]
  3. National Nature Science Foundation [82171485]
  4. Qihang Project of Shanghai Mental Health Center [2019-QH-05]
  5. Sailing Project of Shanghai Rising-star Program [22YF1439200]
  6. Provincial Foreign Specialists Hundred Talents Program Project [BX2021081]
  7. High-end Foreign Experts Introduction Program Project [G2021014067L]

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This study explored the differences in internet use symptom networks between internet addiction (IA) group and non-addiction group. The inability to stop being online is identified as a key symptom of internet addiction, closely related to the inability to control the intention to play games.
Background: An increasing number of people are becoming addicted to the internet as a result of overuse. The Internet Addiction Test (IAT) is a popular tool for evaluating internet use behaviors. The interaction between different symptoms and the relationship between IAT and clinical diagnostic criteria are not well understood. Objective: This study aimed to explore the core symptoms of internet addiction (IA) and the correlation between different symptoms of the IA symptom network. Network analysis was also conducted to explore the association between the IAT scale and the Diagnostic and Statistical Manual of Mental Disorders-5th edition (DSM-5) criteria for IA. Methods: We recruited 4480 internet users (aged 14-24 years), and they completed the IAT. The final analysis included 63.50% (2845/4480) of the participants after screening the submitted questionnaires. Participants were classified into IA group and non-IA (NIA) group. By using partial correlation with Lasso regularization networks, we identified the core symptoms of IA in each group and compared the group differences in network properties (strength, closeness, and betweenness). Then, we analyzed the symptom networks of the DSM-5 diagnostic criteria and IAT scale for IA. Results: A total of 12.47% (355/2845) of the patients were in the IA group and 87.52% (2490/2845) of the patients were in the NIA group, and both groups were evaluated for the following nodes: IAT_06 (school work suffers; strength=0.511), IAT_08 (job performance suffers; strength=0.531), IAT_15 (fantasize about being on the web; strength=0.474), IAT_17 (fail to stop being on the web; strength=0.526), and IAT_12 (fear about boredom if offline; strength=0.502). The IA groups had a stronger edge between IAT_09 (defensive or secretive about being on the web) and IAT_18 (hidden web time) than the NIA groups. The items in DSM-5 had a strong association with IAT_12 (weight=-0.066), IAT_15 (weight=-0.081), IAT_17 (weight=-0.106), IAT_09 (weight=-0.198), and IAT_18 (weight=-0.052). Conclusions: The internet use symptom network of the IA group is significantly different from that of the NIA group. Nodes IAT_06 (school work affected) and IAT_08 (work performance affected) are the resulting symptoms affected by other symptoms, whereas nodes IAT_12 (fear about boredom if offline), IAT_17 (inability to stop being on the web), and IAT_15 (fantasize about being on the web) are key symptoms that activate other symptoms of IA and are strongly linked to the inability to control the intention to play games in the DSM-5.

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